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Presentation 1_CRISPR-FMC: a dual-branch hybrid network for predicting CRISPR-Cas9 on-target activity.pdf

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  • Additional Information
    • Publication Date:
      2025
    • Collection:
      Northumbria University: Figshare
    • Abstract:
      Introduction Accurately predicting the on-target activity of sgRNAs remains a challenge in CRISPR-Cas9 applications, due to the limited generalization of existing models across datasets, small-sample settings, and complex sequence contexts. Current methods often rely on shallow architectures or unimodal encodings, limiting their ability to capture the intricate dependencies underlying Cas9-mediated cleavage. Methods We present CRISPR-FMC, a dual-branch hybrid neural network that integrates One-hot encoding with contextual embeddings from a pre-trained RNA-FM model. Multi-scale convolution (MSC), BiGRU, and Transformer blocks are employed to extract hierarchical sequence features, while a bidirectional cross-attention mechanism with a residual feedforward network enhances multimodal fusion and generalization. Results Across nine public CRISPR-Cas9 datasets, CRISPR-FMC consistently outperforms existing baselines in both Spearman and Pearson correlation metrics, showing particularly strong performance under low-resource and cross-dataset conditions. Ablation experiments confirm the contribution of each module, and base substitution analysis reveals a pronounced sensitivity to the PAM-proximal region. Discussion The PAM-proximal sensitivity aligns with established biological evidence, indicating the model’s capacity to capture biologically relevant sequence determinants. These results demonstrate that CRISPR-FMC offers a robust and interpretable framework for sgRNA activity prediction across heterogeneous genomic contexts.
    • Accession Number:
      10.3389/fgeed.2025.1643888.s001
    • Online Access:
      https://doi.org/10.3389/fgeed.2025.1643888.s001
      https://figshare.com/articles/presentation/Presentation_1_CRISPR-FMC_a_dual-branch_hybrid_network_for_predicting_CRISPR-Cas9_on-target_activity_pdf/30008383
    • Rights:
      CC BY 4.0
    • Accession Number:
      edsbas.F1D467B8